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A New Method for Earth Observation Data Analytics Based on Symbolic Machine Learning

机译:基于符号机器学习的地球观测数据分析新方法

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This work introduces a new classification method in the remote sensing domain, suitably adapted to dealing with the challenges posed by the big data processing and analytics framework. The method is based on symbolic learning techniques, and it is designed to work in complex and information-abundant environments, where relationships among different data layers are assessed in model-free and computationally-effective modalities. The two main stages of the method are the data reduction-sequencing and the association analysis. The former refers to data representation; the latter searches for systematic relationships between data instances derived from images and spatial information encoded in supervisory signals. Subsequently, a new measure named the evidence-based normalized differential index, inspired by the probability-based family of objective interestingness measures, evaluates these associations. Additional information about the computational complexity of the classification algorithm and some critical remarks are briefly introduced. An application of land cover mapping where the input image features are morphological and radiometric descriptors demonstrates the capacity of the method; in this instructive application, a subset of eight classes from the Corine Land Cover is used as the reference source to guide the training phase.
机译:这项工作在遥感领域引入了一种新的分类方法,适用于应对大数据处理和分析框架带来的挑战。该方法基于符号学习技术,旨在在复杂且信息丰富的环境中工作,在该环境中,可以使用无模型且计算有效的方式评估不同数据层之间的关系。该方法的两个主要阶段是数据缩减排序和关联分析。前者是指数据表示;后者搜索从图像导出的数据实例与以监督信号编码的空间信息之间的系统关系。随后,在基于概率的客观兴趣度量系列的启发下,一种名为基于证据的归一化差异指数的新度量对这些关联进行了评估。简要介绍了有关分类算法的计算复杂度的附加信息和一些重要说明。在输入图像特征为形态学特征和辐射特征的土地覆盖制图中的应用证明了该方法的能力。在此指导性应用程序中,Corine Land Cover的八个类别的子集用作指导培训阶段的参考源。

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